Difference between revisions of "Team:Marburg/Model"

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               <h2 class="subtitle">References</h2>
 
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                 Chen, J., Morita, T., & Gottesman, S. (2019). Regulation of Transcription Termination of Small RNAs and
 
                 Chen, J., Morita, T., & Gottesman, S. (2019). Regulation of Transcription Termination of Small RNAs and
 
                 by Small RNAs: Molecular Mechanisms and Biological Functions. Frontiers in Cellular and Infection
 
                 by Small RNAs: Molecular Mechanisms and Biological Functions. Frontiers in Cellular and Infection
 
                 Microbiology, 9. https://doi.org/10.3389/fcimb.2019.00201
 
                 Microbiology, 9. https://doi.org/10.3389/fcimb.2019.00201
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                 de Hoon, M. J. L., Makita, Y., Nakai, K., & Miyano, S. (2005). Prediction of Transcriptional Terminators
 
                 de Hoon, M. J. L., Makita, Y., Nakai, K., & Miyano, S. (2005). Prediction of Transcriptional Terminators
 
                 in Bacillus subtilis and Related Species. PLoS Computational Biology, 1(3), e25.
 
                 in Bacillus subtilis and Related Species. PLoS Computational Biology, 1(3), e25.
 
                 https://doi.org/10.1371/journal.pcbi.0010025
 
                 https://doi.org/10.1371/journal.pcbi.0010025
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                 Krebs, J., Lewin, B., Kilpatrick, S. & Goldstein, E. (2014). Lewin's genes XI. Burlington, Mass: Jones &
 
                 Krebs, J., Lewin, B., Kilpatrick, S. & Goldstein, E. (2014). Lewin's genes XI. Burlington, Mass: Jones &

Revision as of 15:12, 7 December 2019

M O D E L L I N G


This year we used our mathematical and programming background to look for artificial Neutral integration Site option (aNSo) and suitable terminators for our project. We took advantage of genome data bank of UTEX2973 and used bioinformatics tools to gain insights and implement it to our project. In addition to that, we designed a model to predict the doubling times of UTEX2973 that was only possible after a thorough investigation and standardization of the current state of the art methods. To achieve this level of standardization we also implemented a light model to properly predict light intensities for our cultures.


Growth Curve Model


artificial Neutral integration
Site options


Terminator Model